import tensorflow as tf def get_weight(shape, regularizer=None): w = tf.Variable(tf.truncated_normal(shape, stddev=0.1)) if regularizer is not None: tf.add_to_collection('losses', tf.contrib.layers.l2_regularizer(regularizer)(w)) return w def get_bias(shape): b = tf.Variable(tf.zeros(shape)) return b def conv2d(x, w): return tf.nn.conv2d(x, w, strides=[1, 1, 1, 1], padding="VALID") def avg_pool_2x2(x): return tf.nn.avg_pool(x, ksize=[1, 2, 2, 1], strides=[1, 2, 2, 1], padding="VALID") def max_pool_2x2(x): return tf.nn.max_pool(x, ksize=[1, 2, 2, 1], strides=[1, 2, 2, 1], padding="VALID") # 第一层卷积核大小 CONV1_KERNAL_SIZE = 5 # 第一层卷积输出通道数 CONV1_OUTPUT_CHANNELS = 4 # 第二层卷积核大小 CONV2_KERNAL_SIZE = 3 # 第二层卷积输出通道数 CONV2_OUTPUT_CHANNELS = 8 # 第三层卷积核大小 CONV3_KERNAL_SIZE = 3 # 第三层卷积输出通道数 CONV3_OUTPUT_CHANNELS = 12 # 第一层全连接宽度 FC1_OUTPUT_NODES = 60 # 第二层全连接宽度(输出标签类型数) FC2_OUTPUT_NODES = 15 # 输出标签类型数 OUTPUT_NODES = FC2_OUTPUT_NODES def forward(x, regularizer=None, keep_rate=tf.constant(1.0)): vars = [] vars_name = [] nodes = [] conv1_w = get_weight( [CONV1_KERNAL_SIZE, CONV1_KERNAL_SIZE, int(x.shape[3]), CONV1_OUTPUT_CHANNELS] ) conv1_b = get_bias([CONV1_OUTPUT_CHANNELS]) conv1 = tf.nn.relu(tf.nn.bias_add(conv2d(x, conv1_w), conv1_b)) pool1 = avg_pool_2x2(conv1) print("conv1: ", conv1.shape) print("pool1: ", pool1.shape) vars.extend([conv1_w, conv1_b]) vars_name.extend(["conv1_w", "conv1_b"]) nodes.extend([conv1, pool1]) conv2_w = get_weight( [CONV2_KERNAL_SIZE, CONV2_KERNAL_SIZE, CONV1_OUTPUT_CHANNELS, CONV2_OUTPUT_CHANNELS] ) conv2_b = get_bias([CONV2_OUTPUT_CHANNELS]) conv2 = tf.nn.relu(tf.nn.bias_add(conv2d(pool1, conv2_w), conv2_b)) pool2 = avg_pool_2x2(conv2) print("conv2: ", conv2.shape) vars.extend([conv2_w, conv2_b]) vars_name.extend(["conv2_w", "conv2_b"]) nodes.extend([conv2, pool2]) conv3_w = get_weight( [CONV3_KERNAL_SIZE, CONV3_KERNAL_SIZE, CONV2_OUTPUT_CHANNELS, CONV3_OUTPUT_CHANNELS] ) conv3_b = get_bias([CONV3_OUTPUT_CHANNELS]) conv3 = tf.nn.relu(tf.nn.bias_add(conv2d(pool2, conv3_w), conv3_b)) print("conv3: ", conv3.shape) vars.extend([conv3_w, conv3_b]) vars_name.extend(["conv3_w", "conv3_b"]) nodes.extend([conv3]) conv_shape = conv3.get_shape().as_list() node = conv_shape[1] * conv_shape[2] * conv_shape[3] reshaped = tf.reshape(conv3, [-1, node]) reshaped = tf.nn.dropout(reshaped, keep_rate) print("reshaped: ", reshaped.shape) fc1_w = get_weight([node, FC1_OUTPUT_NODES], regularizer) fc1_b = get_bias([FC1_OUTPUT_NODES]) fc1 = tf.nn.relu(tf.matmul(reshaped, fc1_w) + fc1_b) vars.extend([fc1_w, fc1_b]) vars_name.extend(["fc1_w", "fc1_b"]) nodes.extend([fc1]) fc2_w = get_weight([FC1_OUTPUT_NODES, FC2_OUTPUT_NODES], regularizer) fc2_b = get_bias([FC2_OUTPUT_NODES]) fc2 = tf.matmul(fc1, fc2_w) + fc2_b vars.extend([fc2_w, fc2_b]) vars_name.extend(["fc2_w", "fc2_b"]) nodes.extend([fc2]) return nodes, vars, vars_name